| Literature DB >> 35909835 |
YongHui Wei1,2, KeYu Zhao1, XueQiang Lv3, JianZhou Feng4, HaiJu Hu5, Tuyatsetseg Badarch2, ZeYu Zhao4.
Abstract
With the development of artificial intelligence, the application of intelligent algorithms to low-power embedded chips has become a new research topic today. Based on this, this study optimizes the YOLOv2 algorithm by tailoring and successfully deploys it on the K210 chip to train the face object detection algorithm model separately. The intelligent fan with YOLOv2 model deployed in K210 chip can detect the target of the character and obtain the position and size of the character in the machine coordinates. Based on the obtained information of character coordinate position and size, the fan's turning Angle and the size of air supply are intelligently perceived. The experimental results show that the intelligent fan design method proposed here is a new embedded chip intelligent method of cutting and improving the YOLOv2 algorithm. It innovatively designed solo tracking, crowd tracking, and intelligent ranging algorithms, which perform well in human perception of solo tracking and crowd tracking and automatic air volume adjustment, improve the accuracy of air delivery and user comfort, and also provide good theoretical and practical support for the combination of AI and embedded in other fields.Entities:
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Year: 2022 PMID: 35909835 PMCID: PMC9337961 DOI: 10.1155/2022/3484268
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1American shule air circulation fan.
Figure 2Flow chart of the model deployment.
With or without anchor comparison.
| Without anchor | 69.5 mAP | 81% recall |
| With anchor | 69.2 mAP | 88% recall |
Figure 3Fan obtains different locations relative to the visual center.
Figure 4Flowchart of steering gear control fan.
Figure 5Flow chart of the population tracking algorithm.
Figure 6Schematic diagram of single-visual ranging.
Data table of target detection and prediction box size and human-fan distance.
| W | H | X | Y |
|---|---|---|---|
| 135 | 181 | 226 | 12 |
| 107 | 144 | 179 | 20 |
| 82 | 111 | 138 | 25 |
| 64 | 86 | 107 | 30 |
| 47 | 79 | 92 | 40 |
| 38 | 63 | 74 | 50 |
| 37 | 50 | 62 | 60 |
| 30 | 40 | 50 | 80 |
| 24 | 32 | 40 | 90 |
Figure 7Plot of a function of prediction box size and fan distance.
Figure 8Module circuit diagram.
Figure 9Model.